论文标题
使用半监督的源估计方法和马尔可夫随机字段在声学传感器网络中的错位识别
Misalignment Recognition in Acoustic Sensor Networks using a Semi-supervised Source Estimation Method and Markov Random Fields
论文作者
论文摘要
在本文中,我们使用一种有希望的,基于学习的技术来理解声学传感器网络(ASNS)的声学源本地化问题,该技术适应声学环境。特别是,我们查看了ASN中的一个节点在训练过程中从其位置流离失所的情况。由于用于学习本地化模型的ASN之间的不匹配与节点位移后的不匹配导致位置估计错误,因此必须检测到位移,并且需要识别位移节点。我们提出了一种考虑通过保留的节点输出(LONO)子网络进行的位置估计的方法,并使用Markov随机场(MRF)框架来推断每个LONO位置估计值的概率是对估算固有固有的噪声,而对估算的噪声进行对齐,未对准或不可靠。这种概率方法比幼稚的检测方法是有利的,因为它输出了一个归一化值,该值封装了每个LONO子网络提供的条件信息,即读取是否与整个网络不对准。实验结果证实,在各种声学条件下,该提出的方法的性能在识别受损节点时是一致的。
In this paper, we consider the problem of acoustic source localization by acoustic sensor networks (ASNs) using a promising, learning-based technique that adapts to the acoustic environment. In particular, we look at the scenario when a node in the ASN is displaced from its position during training. As the mismatch between the ASN used for learning the localization model and the one after a node displacement leads to erroneous position estimates, a displacement has to be detected and the displaced nodes need to be identified. We propose a method that considers the disparity in position estimates made by leave-one-node-out (LONO) sub-networks and uses a Markov random field (MRF) framework to infer the probability of each LONO position estimate being aligned, misaligned or unreliable while accounting for the noise inherent to the estimator. This probabilistic approach is advantageous over naive detection methods, as it outputs a normalized value that encapsulates conditional information provided by each LONO sub-network on whether the reading is in misalignment with the overall network. Experimental results confirm that the performance of the proposed method is consistent in identifying compromised nodes in various acoustic conditions.